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Wi-Fi based indoor location positioning employing random forest classifier

机译:基于Wi-Fi的室内位置定位,采用随机森林分类器

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Location positioning in indoor environments is a major challenge. Various algorithms have been developed over years to address the problem of indoor positioning. One of the most cost effective choice for indoor positioning is based on received signal strength indicator (RSSI) using existing Wi-Fi networks in commercial and/or public areas. This solution is infrastructure-free and offers meter-range accuracy. In this paper, machine learning approaches including k-nearest neighbor (k-NN), a rules-based classifier (JRip), and random forest have been investigated to estimate the indoor location of a user or an object using RSSI based fingerprinting method. Experimental measurements were carried out using 1500 reference points with received RSSIs of 86 installed APs in the second floor of Centre for Engineering Innovation (CEI) building at the University of Windsor. The results indicate that the random forest classifier presents the best performance as compared to k-NN and JRip classifiers with positioning accuracy higher than 91%.
机译:室内环境中的位置定位是一项重大挑战。多年来已经开发了各种算法来解决室内定位问题。室内定位最具成本效益的选择之一是使用商业和/或公共区域的现有Wi-Fi网络的接收信号强度指示器(RSSI)。此解决方案是无基础设施的,提供仪表范围精度。在本文中,已经研究了包括k最近邻(K-Nn)的机器学习方法,基于规则的分类器和随机森林,以估计基于RSSI的指纹方法的用户或对象的室内位置。使用1500个参考点进行实验测量,该参考点在温莎大学的工程创新中心(CEI)建筑中心的二楼86个APS的RSSIS。结果表明,与K-NN和JRIP分类器相比,随机林分类器具有高于91%的定位精度的最佳性能。

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